analyze |
Data analysis using the model specification |
anova-method |
Provide a comparison of nested models and nonnested models across replications |
bind |
Specify matrices for Monte Carlo simulation of structural equation models |
bindDist |
Create a data distribution object. |
binds |
Specify matrices for Monte Carlo simulation of structural equation models |
coef-method |
Extract parameter estimates from a simulation result |
combineSim |
Combine result objects |
continuousCoverage |
Find coverage rate of model parameters when simulations have randomly varying parameters |
continuousPower |
Find power of model parameters when simulations have randomly varying parameters |
createData |
Create data from a set of drawn parameters. |
draw |
Draw parameters from a 'SimSem' object. |
estmodel |
Shortcut for data analysis template for simulation. |
estmodel.cfa |
Shortcut for data analysis template for simulation. |
estmodel.path |
Shortcut for data analysis template for simulation. |
estmodel.sem |
Shortcut for data analysis template for simulation. |
exportData |
Export data sets for analysis with outside SEM program. |
findCoverage |
Find a value of independent variables that provides a given value of coverage rate |
findFactorIntercept |
Find factor intercept from regression coefficient matrix and factor total means |
findFactorMean |
Find factor total means from regression coefficient matrix and factor intercept |
findFactorResidualVar |
Find factor residual variances from regression coefficient matrix, factor (residual) correlations, and total factor variances |
findFactorTotalCov |
Find factor total covariance from regression coefficient matrix, factor residual covariance |
findFactorTotalVar |
Find factor total variances from regression coefficient matrix, factor (residual) correlations, and factor residual variances |
findIndIntercept |
Find indicator intercepts from factor loading matrix, total factor mean, and indicator mean. |
findIndMean |
Find indicator total means from factor loading matrix, total factor mean, and indicator intercept. |
findIndResidualVar |
Find indicator residual variances from factor loading matrix, total factor covariance, and total indicator variances. |
findIndTotalVar |
Find indicator total variances from factor loading matrix, total factor covariance, and indicator residual variances. |
findPossibleFactorCor |
Find the appropriate position for freely estimated correlation (or covariance) given a regression coefficient matrix |
findPower |
Find a value of independent variables that provides a given value of power. |
findRecursiveSet |
Group variables regarding the position in mediation chain |
generate |
Generate data using SimSem template |
getCIwidth |
Find confidence interval width |
getCoverage |
Find coverage rate of model parameters |
getCutoff |
Find fit indices cutoff given a priori alpha level |
getCutoffNested |
Find fit indices cutoff for nested model comparison given a priori alpha level |
getCutoffNonNested |
Find fit indices cutoff for non-nested model comparison given a priori alpha level |
getExtraOutput |
Get extra outputs from the result of simulation |
getPopulation |
Extract the data generation population model underlying a result object |
getPower |
Find power of model parameters |
getPowerFit |
Find power in rejecting alternative models based on fit indices criteria |
getPowerFitNested |
Find power in rejecting nested models based on the differences in fit indices |
getPowerFitNonNested |
Find power in rejecting non-nested models based on the differences in fit indices |
getPowerFitNonNested-method |
Find power in rejecting non-nested models based on the differences in fit indices |
getPowerFitNonNested-methods |
Find power in rejecting non-nested models based on the differences in fit indices |
impose |
Impose MAR, MCAR, planned missingness, or attrition on a data set |
imposeMissing |
Impose MAR, MCAR, planned missingness, or attrition on a data set |
inspect-method |
Extract information from a simulation result |
likRatioFit |
Find the likelihood ratio (or Bayes factor) based on the bivariate distribution of fit indices |
miss |
Specifying the missing template to impose on a dataset |
model |
Data generation template and analysis template for simulation. |
model.cfa |
Data generation template and analysis template for simulation. |
model.lavaan |
Build the data generation template and analysis template from the lavaan result |
model.path |
Data generation template and analysis template for simulation. |
model.sem |
Data generation template and analysis template for simulation. |
multipleAllEqual |
Test whether all objects are equal |
plotCIwidth |
Plot a confidence interval width of a target parameter |
plotCoverage |
Make a plot of confidence interval coverage rates |
plotCutoff |
Plot sampling distributions of fit indices with fit indices cutoffs |
plotCutoffNested |
Plot sampling distributions of the differences in fit indices between nested models with fit indices cutoffs |
plotCutoffNonNested |
Plot sampling distributions of the differences in fit indices between non-nested models with fit indices cutoffs |
plotDist |
Plot a distribution of a data distribution object |
plotDist-method |
Class '"SimDataDist"': Data distribution object |
plotLogitMiss |
Visualize the missing proportion when the logistic regression method is used. |
plotMisfit |
Plot the population misfit in the result object |
plotPower |
Make a power plot of a parameter given varying parameters |
plotPowerFit |
Plot sampling distributions of fit indices that visualize power of rejecting datasets underlying misspecified models |
plotPowerFitNested |
Plot power of rejecting a nested model in a nested model comparison by each fit index |
plotPowerFitNonNested |
Plot power of rejecting a non-nested model based on a difference in fit index |
popDiscrepancy |
Find the discrepancy value between two means and covariance matrices |
popMisfitMACS |
Find population misfit by sufficient statistics |
pValue |
Find p-values (1 - percentile) by comparing a single analysis output from the result object |
pValueNested |
Find p-values (1 - percentile) for a nested model comparison |
pValueNonNested |
Find p-values (1 - percentile) for a non-nested model comparison |
rawDraw |
Draw values from vector or matrix objects |
setPopulation |
Set the data generation population model underlying an object |
sim |
Run a monte carlo simulation with a structural equation model. |
SimDataDist-class |
Class '"SimDataDist"': Data distribution object |
SimMatrix-class |
Matrix object: Random parameters matrix |
SimMissing-class |
Class '"SimMissing"' |
SimResult-class |
Class '"SimResult"': Simulation Result Object |
SimSem-class |
Class '"SimSem"' |
SimVector-class |
Vector object: Random parameters vector |
summary-method |
Class '"SimDataDist"': Data distribution object |
summary-method |
Matrix object: Random parameters matrix |
summary-method |
Class '"SimMissing"' |
summary-method |
Class '"SimResult"': Simulation Result Object |
summary-method |
Class '"SimSem"' |
summary-method |
Vector object: Random parameters vector |
summaryConverge |
Provide a comparison between the characteristics of convergent replications and nonconvergent replications |
summaryFit |
Provide summary of model fit across replications |
summaryMisspec |
Provide summary of the population misfit and misspecified-parameter values across replications |
summaryParam |
Provide summary of parameter estimates and standard error across replications |
summaryPopulation |
Summarize the population model used for data generation underlying a result object |
summarySeed |
Summary of a seed number |
summaryShort |
Provide short summary of an object. |
summaryShort-method |
Matrix object: Random parameters matrix |
summaryShort-method |
Class '"SimResult"': Simulation Result Object |
summaryShort-method |
Vector object: Random parameters vector |
summaryShort-method |
Provide short summary of an object. |
summaryShort-methods |
Provide short summary of an object. |
summaryTime |
Time summary |